Nature - 2019.08.29

(Frankie) #1

Letter
https://doi.org/10.1038/s41586-019-1461-3


Non-line-of-sight imaging using phasor-field


virtual wave optics


Xiaochun Liu^1 , Ibón Guillén^2 , Marco La Manna^3 , Ji Hyun Nam^1 , Syed Azer reza^3 , toan Huu Le^1 , Adrian Jarabo^2 ,


Diego Gutierrez^2 & Andreas Velten1,3*


Non-line-of-sight imaging allows objects to be observed when


partially or fully occluded from direct view, by analysing indirect
diffuse reflections off a secondary relay surface. Despite many


potential applications^1 –^9 , existing methods lack practical usability
because of limitations including the assumption of single scattering


only, ideal diffuse reflectance and lack of occlusions within the
hidden scene. By contrast, line-of-sight imaging systems do not


impose any assumptions about the imaged scene, despite relying
on the mathematically simple processes of linear diffractive wave


propagation. Here we show that the problem of non-line-of-
sight imaging can also be formulated as one of diffractive wave


propagation, by introducing a virtual wave field that we term the
phasor field. Non-line-of-sight scenes can be imaged from raw time-


of-flight data by applying the mathematical operators that model
wave propagation in a conventional line-of-sight imaging system.


Our method yields a new class of imaging algorithms that mimic the
capabilities of line-of-sight cameras. To demonstrate our technique,


we derive three imaging algorithms, modelled after three different
line-of-sight systems. These algorithms rely on solving a wave


diffraction integral, namely the Rayleigh–Sommerfeld diffraction
integral. Fast solutions to Rayleigh–Sommerfeld diffraction and


its approximations are readily available, benefiting our method.
We demonstrate non-line-of-sight imaging of complex scenes with


strong multiple scattering and ambient light, arbitrary materials,
large depth range and occlusions. Our method handles these


challenging cases without explicitly inverting a light-transport
model. We believe that our approach will help to unlock the potential


of non-line-of-sight imaging and promote the development of
relevant applications not restricted to laboratory conditions.


We have recently witnessed considerable advances in transient imaging
techniques^10 that use streak cameras^11 , gated sensors^6 , amplitude-


modulated continuous waves^12 , single-photon avalanche diodes
(SPADs)^13 or interferometry^14. Access to time-resolved image infor-


mation has led to advances in imaging of objects partially or fully
hidden from direct view^1 –^3 ,^5 –^7 ,^15 –^18 : that is, non-line-of-sight (NLOS)


imaging. Other methods are able to use information encoded in the
phase of continuous light and do not use the time of flight^4. In the basic


configuration of an NLOS system, light bounces off a relay wall, travels
to the hidden scene, then propagates back to the relay wall and finally


reaches the sensor.
Recent NLOS reconstruction methods are based on heuristic


filtered backprojection^2 ,^3 ,^6 ,^7 ,^19 or attempt to compute inverse operators
of simplified forward light transport models^5 ,^9 ,^20. These simplified


models do not take into account multiple scattering, surfaces with
anisotropic reflectance or, with a few exceptions^20 , occlusions or clutter


in the hidden scene. The depth range that can be recovered is also
limited, partially owing to the difference in intensity between first- and


higher-order reflections. Existing methods are thus limited to carefully
controlled cases, imaging isolated objects of simple geometry with


moderate or no occlusion. Whereas the goal of previous works has


been limited to the reconstruction of hidden geometry, we develop a
theoretical framework for general NLOS imaging, reconstructing the
irradiance at a virtual sensor; this enables applications beyond geomet-
ric reconstruction.
Time-of-flight LOS imaging has used a phasor formalism (a pha-
sor, or phase vector, is a complex number representing properties of
a light wave) together with Fourier domain ranging^12 to describe the
emitted modulated light signal. Kadambi et al.^21 extended this concept
to reconstruct NLOS scenes by using a phasor model along with a non-
line-of-sight capture system that uses intensity-modulated light sources
and gain-modulated detection. We show that a similar description can
be used to model the physics of light transport through the scene. The
key insight is that propagation through a scene of intensity-modulated
light can be modelled using a Rayleigh–Sommerfeld diffraction (RSD)
operator acting on a quantity that we term the phasor field. This allows
us to formulate any NLOS imaging problem as a wave imaging prob-
lem (Fig.  1 ) and to transfer well-established insights and techniques
from classic optics into the NLOS domain. Given a captured time-
resolved dataset of light transport through an NLOS scene, and a choice
of a template LOS imaging system, our method provides a recipe that
results in an NLOS imaging algorithm mimicking the capabilities of
the corresponding LOS system. This template system can be any real
or hypothetical wave imaging system that includes a set of light sources
and detectors. The resulting algorithms can then be efficiently solved
using diffraction integrals such as the RSD, for which various fast exact
and approximate solvers exist^22 . Supplementary Information section
A illustrates this.
We start by mathematically defining our phasor field P(,xt). Let
E(,xt) (with units Wm−^2 ) be a quasi-monochromatic scalar field at
position x∈S and time t, incident on (or reflected from) a Lambertian
surface S, with centre frequency Ω 0 and bandwidth ΔΩ ≪ Ω 0. We can
then define

∫∫∣∣ ∣∣
τ

≡′′− ′′
τ

τ

−/

+/

−/

+/
PExxttt Ex
T

(,) tt

1
(,)d

1
(,)d (1)
t

t

tT

tT

2

2
2

2

2
2

as the mean subtracted irradiance (in watts per square metre) at point
x and time t. The 〈·〉 operator denotes spatial speckle averaging (for the
reflected case) accounting for laser illumination, and τ represents
the averaging of the intensity at a fast detector, with τ ≪  1 /ΔΩ ≪ T.
The second integral in equation ( 1 ) is a long-term average intensity
over an interval T ≫ τ of the signal as seen by a conventional non-
transient photodetector. Now, let us define the Fourier component of
P(,xt) for frequency ω as

ω ≡∫


ω

+∞

−∞

PP()xx(,tt)e−itd (2)
0,

(^1) Department of Electrical and Computer Engineering, University of Wisconsin Madison, Madison, WI, USA. (^2) Graphics and Imaging Lab, Universidad de Zaragoza—I3A, Zaragoza, Spain.
(^3) Department of Biostatistics and Medical Informatics, University of Wisconsin Madison, Madison, WI, USA. *e-mail: [email protected]
620 | NAtUre | VOL 572 | 29 AUGUSt 2019

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